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Depth Estimation From a Single Image Using Deep Learned Phase Coded Mask

机译:使用深度学习相位编码掩模从单个图像进行深度估计

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摘要

Depth estimation from a single image is a well-known challenge in computer vision. With the advent of deep learning, several approaches for monocular depth estimation have been proposed, all of which have inherent limitations due to the scarce depth cues that exist in a single image. Moreover, these methods are very demanding computationally, which makes them inadequate for systems with limited processing power. In this paper, a phase-coded aperture camera for depth estimation is proposed. The camera is equipped with an optical phase mask that provides unambiguous depth-related color characteristics for the captured image. These are used for estimating the scene depth map using a fully convolutional neural network. The phase-coded aperture structure is learned jointly with the network weights using backpropagation. The strong depth cues (encoded in the image by the phase mask, designed together with the network weights) allow a much simpler neural network architecture for faster and more accurate depth estimation. Performance achieved on simulated images as well as on a real optical setup is superior to the state-of-the-art monocular depth estimation methods (both with respect to the depth accuracy and required processing power), and is competitive with more complex and expensive depth estimation methods such as light-field cameras.
机译:从单个图像进行深度估计是计算机视觉中众所周知的挑战。随着深度学习的到来,已经提出了几种用于单眼深度估计的方法,由于存在于单个图像中的深度提示不足,所有这些方法都有其固有的局限性。此外,这些方法在计算上要求很高,这使得它们不足以用于处理能力有限的系统。本文提出一种用于深度估计的相位编码光圈相机。相机配备了光学相位掩模,可为捕获的图像提供明确的深度相关色彩特征。这些用于使用完全卷积神经网络估计场景深度图。使用反向传播与网络权重一起学习相位编码孔径结构。强大的深度提示(由相位掩模在图像中编码,并与网络权重一起设计)允许使用更简单的神经网络架构,以实现更快,更准确的深度估计。在模拟图像以及实际光学设置上获得的性能均优于最新的单眼深度估计方法(在深度精度和所需的处理能力方面),并且在更复杂和更昂贵方面具有竞争力深度估计方法,例如光场相机。

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